Nguyen Kevin, Haytmyradov Maksat, Mostafavi Hassan, Patel Rakesh, Surucu Murat, Block Alec, Harkenrider Matthew M, Roeske John C
Stritch School of Medicine, Loyola University Chicago, Maywood, IL, United States.
Department of Radiation Oncology, Loyola University Medical Center, Maywood, IL, United States.
Front Oncol. 2018 Jul 31;8:292. doi: 10.3389/fonc.2018.00292. eCollection 2018.
Template-based matching algorithms are currently being considered for markerless motion tracking of lung tumors. These algorithms use tumor templates derived from the planning CT scan, and track the motion of the tumor on single energy fluoroscopic images obtained at the time of treatment. In cases where bone may obstruct the view of the tumor, dual energy fluoroscopy may be used to enhance soft tissue contrast. The goal of this study is to predict which tumors will have a high degree of accuracy for markerless motion tracking based on radiomic features obtained from the planning CT scan, using peak-to-sidelobe ratio (PSR) as a surrogate of tracking accuracy. In this study, CT imaging data of 8 lung cancer patients were obtained and analyzed through the open source IBEX program to generate 2,287 radiomic features. Agglomerative hierarchical clustering was used to narrow down these features into 145 clusters comprised of the highest correlation to PSR. The features among the clusters with the least inter-correlation were then chosen to limit redundancy in the data. The results of this study demonstrated a number of radiomic features that are positively correlated to PSR. The features with the highest degree of correlation included complexity, orientation and range. This approach may be used to determine patients for whom markerless motion tracking would be beneficial.
基于模板的匹配算法目前正被用于肺部肿瘤的无标记运动跟踪。这些算法使用从计划CT扫描中获得的肿瘤模板,并在治疗时获取的单能荧光透视图像上跟踪肿瘤的运动。在骨骼可能遮挡肿瘤视野的情况下,可以使用双能荧光透视来增强软组织对比度。本研究的目的是基于从计划CT扫描中获得的影像组学特征,以峰旁瓣比(PSR)作为跟踪准确性的替代指标,预测哪些肿瘤在无标记运动跟踪方面具有高度准确性。在本研究中,获取了8例肺癌患者的CT成像数据,并通过开源的IBEX程序进行分析,以生成2287个影像组学特征。使用凝聚层次聚类将这些特征缩小到145个与PSR相关性最高的聚类中。然后选择聚类中相互相关性最小的特征,以限制数据中的冗余。本研究结果表明了一些与PSR呈正相关的影像组学特征。相关性最高的特征包括复杂性、方向和范围。这种方法可用于确定无标记运动跟踪对其有益的患者。